Data Analyst

Proactive Appointments
Camberley
4 days ago
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Data Analyst

Location: Camberley, Surrey – Hybrid working

Salary: £42,000

Employment Type: Full-Time

About the Role

We are seeking a highly skilled and analytical Data Analyst to join our team. This is an exciting opportunity for a motivated individual with strong data visualisation, modelling, and reporting expertise to support informed decision-making across the organisation.

You will be responsible for transforming complex data into meaningful insights, producing high-quality reports, and supporting stakeholders at all levels with accurate and timely information.

Key Responsibilities

  • Develop and maintain high-quality data visualisations and dashboards using Power BI
  • Analyse and model complex datasets to identify trends and insights
  • Write and optimise SQL queries to extract and manipulate data
  • Produce clear, accurate reports to support strategic and operational decision-making
  • Work collaboratively with teams across the organisation
  • Prioritise workload effectively to meet deadlines
  • Ensure accuracy, attention to detail, and data integrity at all times

Person Specification

Essential

  • Expert knowledge of data visualisation and report creation
  • Advanced data analysis and modelling skills
  • Str...

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